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Open AccessJournal ArticleDOI

Interpretable deep recommender system model for prediction of kinase inhibitor efficacy across cancer cell lines.

TLDR
DEERS as mentioned in this paper is a neural network recommender system for kinase inhibitor sensitivity prediction, which combines two autoencoders to project cell line and drug features into 10-dimensional hidden representations and combines them into response prediction.
Abstract
Computational models for drug sensitivity prediction have the potential to significantly improve personalized cancer medicine. Drug sensitivity assays, combined with profiling of cancer cell lines and drugs become increasingly available for training such models. Multiple methods were proposed for predicting drug sensitivity from cancer cell line features, some in a multi-task fashion. So far, no such model leveraged drug inhibition profiles. Importantly, multi-task models require a tailored approach to model interpretability. In this work, we develop DEERS, a neural network recommender system for kinase inhibitor sensitivity prediction. The model utilizes molecular features of the cancer cell lines and kinase inhibition profiles of the drugs. DEERS incorporates two autoencoders to project cell line and drug features into 10-dimensional hidden representations and a feed-forward neural network to combine them into response prediction. We propose a novel interpretability approach, which in addition to the set of modeled features considers also the genes and processes outside of this set. Our approach outperforms simpler matrix factorization models, achieving R  $$=$$  0.82 correlation between true and predicted response for the unseen cell lines. The interpretability analysis identifies 67 biological processes that drive the cell line sensitivity to particular compounds. Detailed case studies are shown for PHA-793887, XMD14-99 and Dabrafenib.

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PharmacoDB 2.0: improving scalability and transparency of in vitro pharmacogenomics analysis.

TL;DR: PharmacoDB 2.0 as mentioned in this paper integrates multiple cancer pharmacogenomics datasets profiling approved and investigational drugs across cell lines from diverse tissue types, enabling users to efficiently navigate across datasets, view and compare drug dose-response data for a specific drug-cell line pair.
Journal ArticleDOI

Deep learning methods for drug response prediction in cancer: Predominant and emerging trends

TL;DR: A survey of deep learning-based approaches for predicting cancer response to drug treatments can be found in this article , where the authors conduct an extensive search and analysis on deep learning models that predict the response to single drug treatments.
Journal ArticleDOI

Opportunities and challenges in interpretable deep learning for drug sensitivity prediction of cancer cells

TL;DR: In this paper , the authors discuss the strengths and limitations of interpretable deep learning methods for drug sensitivity prediction in cancer research, and suggest future directions that could guide further improvement in deep learning-based methods.
Journal ArticleDOI

Improved drug response prediction by drug target data integration via network-based profiling

TL;DR: In this paper , the authors proposed a framework that can improve existing deep learning-based DRP models by effectively utilizing drug target information, which can be used to compute the perturbation effects by the pharmacologic modulation of target gene.
References
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Journal ArticleDOI

Matplotlib: A 2D Graphics Environment

TL;DR: Matplotlib is a 2D graphics package used for Python for application development, interactive scripting, and publication-quality image generation across user interfaces and operating systems.
Journal ArticleDOI

Multilayer feedforward networks are universal approximators

TL;DR: It is rigorously established that standard multilayer feedforward networks with as few as one hidden layer using arbitrary squashing functions are capable of approximating any Borel measurable function from one finite dimensional space to another to any desired degree of accuracy, provided sufficiently many hidden units are available.
Journal ArticleDOI

Regularization and variable selection via the elastic net

TL;DR: It is shown that the elastic net often outperforms the lasso, while enjoying a similar sparsity of representation, and an algorithm called LARS‐EN is proposed for computing elastic net regularization paths efficiently, much like algorithm LARS does for the lamba.
Proceedings ArticleDOI

XGBoost: A Scalable Tree Boosting System

TL;DR: XGBoost as discussed by the authors proposes a sparsity-aware algorithm for sparse data and weighted quantile sketch for approximate tree learning to achieve state-of-the-art results on many machine learning challenges.
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